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Detrended cross-correlations between returns, volatility, trading activity, and volume traded for the stock market companies

机译:股票市场公司的回报,波动率,交易活动和交易量之间的趋势互相关

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摘要

We consider a few quantities that characterize trading on a stock market in a fixed time interval: logarithmic returns, volatility, trading activity (i.e., the number of transactions), and volume traded. We search for the power-law cross-correlations among these quantities aggregated over different time units from 1 min to 10 min. Our study is based on empirical data from the American stock market consisting of tick-by-tick recordings of 31 stocks listed in Dow Jones Industrial Average during the years 2008-2011. Since all the considered quantities except the returns show strong daily patterns related to the variable trading activity in different parts of a day, which are the most evident in the autocorrelation function, we remove these patterns by detrending before we proceed further with our study. We apply the multifractal detrended cross-correlation analysis with sign preserving (MFCCA) and show that the strongest power-law cross-correlations exist between trading activity and volume traded, while the weakest ones exist (or even do not exist) between the returns and the remaining quantities. We also show that the strongest cross-correlations are carried by those parts of the signals that are characterized by large and medium variance. Our observation that the most convincing power-law cross-correlations occur between trading activity and volume traded reveals the existence of strong fractal-like coupling between these quantities. Copyright (C) EPLA, 2015
机译:我们考虑固定时间间隔内股票交易特征的一些数量:对数回报,波动率,交易活动(即交易数量)和交易量。我们在从1分钟到10分钟的不同时间单位内汇总的这些量中搜索幂律互相关。我们的研究基于美国股市的经验数据,其中包括2008-2011年期间道琼斯工业平均指数列出的31只股票的逐笔记录。由于除收益以外的所有考虑的数量都显示出与一天中不同部分的可变交易活动相关的强大的每日模式,这在自相关函数中最为明显,因此在继续进行研究之前,我们通过去趋势消除了这些模式。我们使用保留符号(MFCCA)的多分形去趋势互相关分析,表明交易活动和交易量之间存在最强的幂律互相关,而收益和交易之间存在(甚至不存在)最弱的幂律互相关。剩余数量。我们还表明,最强的互相关性是由那些具有大和中方差的信号部分承载的。我们观察到最令人信服的幂律互相关出现在交易活动和交易量之间,揭示了这些数量之间存在强烈的分形耦合。版权(C)EPLA,2015年

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